Prediction Analysis of Laboratory Equipment Depreciation Using Supervised Learning Methods Cover Image

Prediction Analysis of Laboratory Equipment Depreciation Using Supervised Learning Methods
Prediction Analysis of Laboratory Equipment Depreciation Using Supervised Learning Methods

Author(s): Geovanne Farell, Nizwardi Jalinus, Asmar Yulastri, Sandi Rahmadika, Rido Wahyudi
Subject(s): Electronic information storage and retrieval, Education and training
Published by: UIKTEN - Association for Information Communication Technology Education and Science
Keywords: Machine learning; supervised learning; linear regression; laboratory equipment

Summary/Abstract: Asset management in Indonesia still poses problems in terms of securing state-owned property. These concerns make it difficult for analysts to predict laboratory equipment depreciation. Therefore, this research aims to create a new model to address this issue. Additionally, to support laboratory managers in gaining insights, a technology-based framework in the form of a laboratory equipment depreciation prediction model has been developed. A new model has been created in this research, which integrates supervised learning models with linear regression algorithms, and subsequently employs a waterfall system development approach. The testing results of the model for predicting laboratory equipment depreciation showed a high level of accuracy, reaching 93%. Furthermore, the comparison between the prediction model and the laboratory equipment data tested directly by technicians demonstrated an accuracy rate of 100%. Finally, the numerical results demonstrate that our framework provides a valuable solution to the difficulties in predicting laboratory equipment depreciation, offering an innovative and practical approach to laboratory equipment maintenance.

  • Issue Year: 12/2023
  • Issue No: 3
  • Page Range: 1525-1532
  • Page Count: 8
  • Language: English